Exception handling in a concurrent computing process

ABSTRACT

A system initiates multiple instances of a concurrent computing process, establishes a communication channel among the multiple instances, initiates execution of a computational job on the multiple instances, detects an interrupt request on one of the multiple instances, and terminates execution of the computational job while maintaining communication among the multiple instances via the communication channel.

RELATED APPLICATION

This application is a continuation of U.S. patent application Ser. No. 11/880,418, filed Jul. 19, 2007, which is a continuation of U.S. patent application Ser. No. 11/402,748, filed Apr. 12, 2006, the entire content of which is incorporated by reference herein.

TECHNICAL FIELD

The present application generally relates to a concurrent computing process and more specifically to exception handling in the concurrent computing process.

BACKGROUND OF THE INVENTION

MATLAB® is a product of The MathWorks, Inc. of Natick, Ma., which provides engineers, scientists, mathematicians, and educators across a diverse range of industries with an environment for technical computing applications. MATLAB® is an intuitive high performance language and technical computing environment that provides mathematical and graphical tools for mathematical computation, data analysis, visualization and algorithm development. MATLAB® integrates numerical analysis, matrix computation, signal processing, and graphics in an easy-to-use environment where problems and solutions are expressed in familiar mathematical notation, without traditional programming. MATLAB® is used to solve complex engineering and scientific problems by developing mathematical models that simulate the problem. A model is prototyped, tested and analyzed by running the model under multiple boundary conditions, data parameters, or just a number of initial guesses. In MATLAB®, one can easily modify the model, plot a new variable or reformulate the problem in a rapid interactive fashion that is typically not feasible in a non-interpreted programming such as Fortran or C.

As a desktop application, MATLAB® allows scientists and engineers to interactively perform complex analysis and modeling in their familiar workstation environment. With many engineering and scientific problems requiring larger and more complex modeling, computations accordingly become more resource intensive and time-consuming. However, a single workstation can be limiting to the size of the problem that can be solved, because of the relationship of the computing power of the workstation to the computing power necessary to execute computing intensive iterative processing of complex problems in a reasonable time. For example, a simulation of a large complex aircraft model may take a reasonable time to run with a single computation with a specified set of parameters. However, the analysis of the problem may also require the model be computed multiple times with a different set of parameters, e.g., at one-hundred different altitude levels and fifty different aircraft weights, to understand the behavior of the model under varied conditions. This would require five-thousand computations to analyze the problem as desired and the single workstation would take an unreasonable or undesirable amount of time to perform these simulations. Therefore, it is desirable to perform a computation concurrently using multiple workstations when the computation becomes so large and complex that it cannot be completed in a reasonable amount of time on a single workstation.

Applications that are traditionally used as desktop applications, such as MATLAB®, need to be modified to be able to utilize the computing power of concurrent computing, such as parallel computing and distributed computing. Each machine or workstation needs to have its local copy of the application and between the different instances of the application, there needs to be a way to communicate and pass messages between the machines and workstations so that the multiple machines or workstations in the concurrent computing environment can collaborate with each other.

One example of a message passing method that establishes a communication channel between machines or workstations is Message Passing Interface (MPI). MPI is a standard for an interface for message passing that has been used between parallel machines or workstations in concurrent computing systems. In conventional concurrent computing systems, computing applications, which make use of MPI communications must be launched using a launcher program (usually called “mpirun” or “mpiexec”). An example of the syntax for calling mpirun is as follows.

mpirun-np<number of processes><application name and arguments>

Once an application has been launched using the above MPI method on a concurrent computing system and an error occurs, the default behavior is to abort all the parallel processes immediately and disconnect the communication channel established between the multiple machines and workstations. This behavior is not desirable as connections need to be re-established before concurrent computing can be utilized again.

SUMMARY OF THE INVENTION

According to one aspect, a method may include initiating a group of instances of a concurrent computing process, establishing a communication channel among the group of instances to form a collaboration for execution of a computational job on the group of instances, detecting an interrupt request on one of the group of instances, and terminating execution of the computational job while maintaining communication among the group of instances via the communication channel.

According to another aspect, a computer-readable medium may store computer-executable instructions for receiving, with an instance, a portion of a computational job, causing a communication channel to be established with one or more other instances, initiating execution of the portion of the computational job with the instance, and terminating execution of the portion of the computational job, in response to an interrupt request, while maintaining communication with the one or more other instances via the communication channel.

According to still another aspect, a system may include one or more devices to initiate a group of instances of a concurrent computing process, establish a communication channel among the group of instances to form a collaboration for execution of a computational job on the group of instances, detect an interrupt request on one of the group of instances, terminate execution of the computational job while maintaining communication among the group of instances via the communication channel, and return the group of instances to a state prior to communication of data between the group of instances.

According to a further aspect, a system may include means for initiating a group of instances of a concurrent computing process, means for establishing a communication channel among the group of instances, means for initiating execution of a computational job on the group of instances, means for detecting an interrupt request on one of the group of instances, and means for terminating execution of the computational job while maintaining communication among the group of instances via the communication channel.

BRIEF DESCRIPTION OF THE FIGURES

The foregoing and other objects, aspects, features, and advantages of the invention will become more apparent and may be better understood by referring to the following description taken in conjunction with the accompanying drawings, in which:

FIG. 1 is a block diagram of a computing device suitable for practicing an embodiment of the present invention;

FIG. 2 is a block diagram of a concurrent computing system including more than one computing device for practicing an embodiment of the present invention;

FIG. 3 is a block diagram illustrating a collaboration of concurrent computing labs in the illustrative embodiment of the present invention; and

FIG. 4 illustrates a flowchart depicting steps taken to practice one embodiment of the present invention.

DETAILED DESCRIPTION

The following illustrative embodiments will be described solely for illustrative purposes relative to a MATLAB®-based technical computing environment. Although the illustrative embodiment will be described relative to a MATLAB®-based application, one of ordinary skill in the art will appreciate that the present invention may be applied to parallel or distributed processing of technical computing tasks with other technical computing environments, such as technical computing environments using software products of LabVIEW® or MATRIXx from National Instruments, Inc., or Mathematica® from Wolfram Research, Inc., or Mathcad of Mathsoft Engineering & Education Inc., or Maple™ from Maplesoft, a division of Waterloo Maple Inc.

FIG. 1 depicts an environment suitable for practicing an illustrative embodiment of the present invention. The environment includes a computing device 102 having memory 106, on which software according to one embodiment of the present invention may be stored, one or more processors 104 for executing software stored in the memory 106, and other programs for controlling system hardware. Each of the one or more processors 104 can be a single or multiple core processor. Virtualization can be employed in computing device 102 so that infrastructure and resources in the computing device can be shared dynamically. Virtualized processors may also be used with executable process 120 and other software in storage 108. A virtual machine can be provided to handle a process running on multiple processors so that the process appears to be using only one computing resource rather than multiple. Multiple virtual machines can also be used with one processor. Other computing resources, such as FPGA, ASIC, DSP, and GPP, may also be used for executing code and/or software. A hardware accelerator can additionally be used to speed up the general processing rate of the computing device 102.

The memory 106 may comprise a computer system memory or random access memory such as DRAM, SRAM, EDO RAM, etc. The memory 106 may comprise other types of memory as well, or combinations thereof. A user may interact with the computing device 102 through a visual display device 114 such as a computer monitor, which may include a user interface 115. The computing device 102 may include other I/O devices such a keyboard 110 and a pointing device 112, for example a mouse, for receiving input from a user. Optionally, the keyboard 110 and the pointing device 112 may be connected to the visual display device 114. The computing device 102 may include other suitable conventional I/O peripherals. The computing device 102 may further comprise a storage device 108, such as a hard-drive or CD-ROM, for storing an operating system 116 and other related software, and for storing executable process 120, such as parallel computing with MATLAB® or distributed computing with MATLAB®. Executable process 120 can be, but is not limited to, an application, a program, a module, or a script. Executable process 120 may include a concurrent computing environment 122 to enable concurrent computing on the computing device 102. Executable process 120 can also include a communication interface 123, such as MPI or other suitable interface, for setting up a communication channel with another computing device to form a collaboration (discussed later). One of ordinary skill in the art will appreciate that communication interface 123 can be adapted to be included as part of the executable process 120, or it can be a stand-alone application, module, script, or program that responds to calls from executable process 120, such as communication interface 123′. Additionally, the operating system 116 and executable process 120 can be run from a bootable CD, such as, for example, KNOPPIX®, a bootable CD for GNU/Linux.

Additionally, the computing device 102 may include a network interface 118 to interface to a Local Area Network (LAN), Wide Area Network (WAN) or the Internet through a variety of connections including, but not limited to, standard telephone lines, LAN or WAN links (e.g., 802.11, T1, T3, 56kb, X.25), broadband connections (e.g., ISDN, Frame Relay, ATM), wireless connections, or some combination of any or all of the above. The network interface 118 may comprise a built-in network adapter, network interface card, PCMCIA network card, card bus network adapter, wireless network adapter, USB network adapter, modem or any other device suitable for interfacing the computing device 102 to any type of network capable of communication and performing the operations described herein. Moreover, the computing device 102 may be any computer system such as a workstation, desktop computer, server, laptop, handheld computer or other form of computing or telecommunications device that is capable of communication and that has sufficient processor power and memory capacity to perform the operations described herein.

The computing device 102 can be running any operating system such as any of the versions of the Microsoft® Windows® operating systems, the different releases of the Unix and Linux operating systems, any version of the MacOS® for Macintosh computers, any embedded operating system, any real-time operating system, any open source operating system, any proprietary operating system, any operating systems for mobile computing devices, or any other operating system capable of running on the computing device and performing the operations described herein.

FIG. 2 depicts a concurrent computing system 200 that is suitable for practicing the illustrative embodiment of the present invention. In brief overview, the system 200 comprises a concurrent computing client 250 running on a client 150, concurrent computing labs 270A-N on workstations 170A-N, and optionally a server 160. A concurrent computing lab is a computing resource that performs distributed computing or parallel computing. A computing resource can be a processor, a computer system, or other hardware with computational capabilities. The concurrent computing client 250 is in communication with the concurrent computing labs 170A-N and server 160 through network communication channels 130 over a network 140. One of ordinary skill in the art will appreciate that workstations 170A-N, server 160, and client 150 may have one or more concurrent computing lab. Each concurrent computing lab is an instance of the executable process 120.

The concurrent computing client 250 can be a technical computing software application that provides a technical computing and/or graphical modeling environment for generating block diagram models and to define mathematical algorithms for simulating models. The concurrent computing client 250 may include all or a portion of the functionality provided by the stand-alone desktop application of MATLAB®. Additionally, the concurrent computing client 250 can be any of the software programs available in the MATLAB® product family. Furthermore, the concurrent computing client 250 can be a custom software program or other software that accesses functionalities of software programs in the MATLAB® product family via an interface, such as an application programming interface, or by other means. One of ordinarily skill in the art will appreciate the various combinations of client types may access the functionalities of the system.

In one embodiment of the present invention, concurrent computing client 250 is also a concurrent computing lab. In such a configuration, communication channels are setup among all the concurrent computing labs (concurrent computing client 250 and concurrent computing labs 270A-N). Each of the concurrent computing labs (including the concurrent computing client 250) has its local copy of a computer program that is executed in the corresponding concurrent computing labs, so there is no main concurrent computing lab that distributes executions to the other concurrent computing labs. The concurrent computing client 250 will additionally have the functionality to accept inputs and/or commands from a user related to the computer program using a tool such as an Integrated Development Environment (IDE). The concurrent computing client 250 and concurrent computing labs 270A-N can be configured to perform distributed computing or parallel computing.

In one embodiment of the present invention, functions can be defined, by the concurrent computing client 250 with an application programming interface and/or programming language, representing a technical computing task to be executed by either a technical computing environment local to the client 150, or remote on the workstations 270A-N. Tasks can be declared on a concurrent computing client 250 and additionally organized into jobs. A job is a logical unit of activities, or tasks that are processed and/or managed collectively. A task defines a technical computing command, such as a MATLAB® command, to be executed, and the number of arguments and any input data to the arguments. A job is a group of one or more tasks.

In one aspect of the present invention, a task can be directly distributed by the concurrent computing client 250 to one or more computing resources, such as workstations 170A-N. A computing resource performs technical computing on a task and may return a result to the concurrent computing client 250.

In another aspect of the present invention, the system includes a server 160 which runs a scheduler 260. The scheduler 260 can be a scheduler provided with executable process 120, a generic scheduler, or a third-party scheduler that is designed and provided a company or individual that does not provide executable process 120. For example, given that executable process 120 is parallel computing with MATLAB® by The MathWorks, Inc. of Natick, Massachusetts, a third-party scheduler can be MPI Exec, LSF, Condor, Microsoft Compute Cluster Server, or PBS. The server 160 communicates over a network communication channel 130 on the network 140 to the workstations 170A-N. One of ordinary skill in the art will appreciate that any of the workstations 170A-N may include more than one technical computing lab to practice the present invention. Additionally, client 150 and server 160 may also include one or more concurrent computing labs.

The scheduler 260 comprises one or more application software components to provide for the automatic distribution of tasks from the concurrent computing client 250 to one or more of the concurrent computing labs 270A-N. The scheduler 260 allows the concurrent computing client 250 to delegate the management of task distribution to the scheduler 260. The scheduler may also set up for concurrent computing client 250 the concurrent computing labs 270A-N by using the information received from the concurrent computing client 250 regarding the number of concurrent computing labs needed and other configuration information. Hence, the concurrent computing client 250 does not need to know the specifics of the concurrent computing labs 270A-N. The concurrent computing client 250 can define a function to submit the task to the scheduler 260, and get a result of the task from the scheduler 260. As such, the scheduler 260 provides a level of indirection between the concurrent computing client 250 and the concurrent computing labs 270A-N.

This eases the distributed programming and integration burden on the concurrent computing client 250. The concurrent computing client 250 does not need to have prior knowledge of the availability of the workstations 170A-N. For multiple task submissions from the concurrent computing client 250, the scheduler 260 can manage and handle the delegations of the tasks to the concurrent computing labs 270A-N and hold the results of the tasks on behalf of the concurrent computing client 250 for retrieval after the completion of technical computing of all the tasks distributed by concurrent computing client 250. In an alternative implementation, the concurrent computing labs 270A-N may provide concurrent computing client 250 directly the results of the tasks assigned to concurrent computing labs 270A-N by the scheduler 260. The scheduler 260 can further include an object-oriented interface to provide control of delegating tasks and obtaining results in the system 200. The scheduler 260 also provides an interface for managing a group of tasks collectively as a single unit called a job, and on behalf of a concurrent computing client 250, submitting those tasks making up the job, and obtaining the results of each of the tasks until the job is completed. One of ordinarily skill in the art will recognize the functions and operations of the scheduler 260 can be separated into various software components, applications and interfaces. Additionally, the functions and operations of the scheduler 260 may reside on either the concurrent computing client 250 or one of the concurrent computing labs 270A-N instead of the server 160.

Additionally, each of the client 150, the server 160, and the workstations 170A-N can be running the same or different operating systems with the same or different processors. For example, the client 150 can be running Microsoft® Windows®, the server 160 can be running a version of Unix, and the workstations 170A-N a version of Linux. Alternatively, each of the client 150, the server 160 and the workstations 170A-N can be running Microsoft® Windows®. One of ordinary skill in the art will recognize the various combinations of operating systems and processors that can be running on any of the computing devices (client 150, server 160, workstations 170A-N).

FIG. 3 illustrates a collaboration of the concurrent computing labs 270A, 270B, and 270C. The concurrent computing labs 270A, 270B, and 270C establish a communication channel 320 and form a collaboration 310. The concurrent computing labs 270A, 270B, and 270C may communicate via a MPI communication channel 320. In other embodiments, the concurrent computing labs 270A, 270B, and 270C can interface via socket based communications over TCP/IP implementing a custom message specification. In further embodiments, the concurrent computing labs 270A, 270B, and 270C may communicate using any available messaging communications products and/or custom solutions that allow the sending and receiving of messages among the concurrent computing labs 270A, 270B, and 270C. In certain embodiments, the communication channel 320 may include a file interfacing mechanism such as reading and writing to files on a network accessible directory or common file system. Furthermore, the concurrent computing labs 270A, 270B, and 270C can each be waiting or listening for messages from other concurrent computing labs 270A, 270B, and 270C. One of ordinary skill in the art will recognize the various types of interfaces to communicate messages among the concurrent computing labs 270A, 270B, and 270C.

In one embodiment of the present invention, the collaboration is dynamic. In other words, a user can modify or change the size of the collaboration by adding another computing resource. The user may be provided on the client 150 with a user interface to modify or change the size of the collaboration or designate a specific resource to add or remove from the collaboration. In another embodiment of the present invention, the client 150 can forward the information to the scheduler 260, which will determine a concurrent computing lab to be added or removed from the collaboration.

FIG. 4 illustrates a flowchart depicting steps taken to practice one embodiment of the present invention. In step 402, multiple instances of the executable process 120 are launched on one or more computing devices. A communication channel is established in step 404 for communication among the multiple instances. The multiple instances form a collaboration to execute a computational job. In step 406, the computational job is executed concurrently by the multiple instances. An interrupt request is detected in step 408 on one of the multiple instances. The interrupt request can come from a user who wants to terminate the computational job. The interrupt request can also be caused by an error in the executable process 120. Additionally, the interrupt request can be caused by an error in the communication channel, such as a deadlock of data or message sending and receiving between two or more instances. One of ordinary skill in the art will appreciate that there are many different reasons and ways that an interrupt request can be made. The execution of the computational job is terminated in step 410. However, the communication among the multiple instances established by the communication channel is not terminated. In one embodiment of the present invention, this can be done by making messages sent between the multiple instances to be interruptible. The following pseudo code shows how a “Receive” function call can be made interruptible, where MPI is the communication means between instances.

/*  * Interrupting ongoing communication - this is the lowest level C-  * code that implements the interruptible communication. This example  * shows how a call to “Receive” can be made interruptible  */ int interruptibleReceive(void * data, int count, MPI_Datatype type,  int source, int tag, MPI_Comm communicator) { MPI_Request request; MPI_Status status; int done = 0; /*  * this return code will be overwritten if the user requests an  * interrupt  */ int returnCode = NORMAL_COMPLETION; /*  * MPI_Irecv returns a request handle which allows the state of  * the request to be queried  */ MPI_Irecv(data, count, type, source, tag, communicator, &request); while(!done) { if(isInterruptPending( )) { /*  * isInterruptPending returns true if the user has * requested interruption of the computation. Cancel this * request.  */ MPI_Cancel(request); done = 1; returnCode = INTERRUPT_REQUESTED; } else { /*  * If the receive has completed, “done” will be true * after this call:  */ MPI_Test(request, &done, &status); } if(!done) { /*  * Sleep a while to avoid blocking a processor  */ SLEEP_FCN(sleepAmount); /*  * Use an algorithm to increase the amount of time that * we sleep on each iteration  */ sleepAmount = updateSleepAmount(sleepAmount); } } return returnCode; }

One of ordinary skill in the art will appreciate that a corresponding interruptible function call to “Send” can be achieved the same way as the interruptible “Receive” function call. Therefore, an instance of the executable process 120 can make a function call to an interruptible function call to receive or send messages. When an interrupt request is detected, special actions can be taken to handle the interrupt request. In one embodiment of the present invention, a function call is made when an interrupt request is detected to handle the interrupt request. For example, using the same example from before, when a function call to “interruptibleReceive” returns a result that indicates an interrupt is requested, another function can be made to handle the interrupt request.

/*  * This is the code that is linked directly to the MATLAB command  * “labReceive”.  */ void labReceive( ... ) { int receiveCode = interruptibleReceive(data, count, type, source, tag, communicator); if(receiveCode == INTERRUPT_REQUESTED) { handleInterrupt( ); } }

One of ordinary skill in the art will appreciate that there are many ways to handle an interrupt request. In one embodiment of the present invention, the execution of the computational job is terminated in step 410 while maintaining the communication among the multiple instances established by the communication channel 320. Additionally, data sending and receiving can be terminated between instances in step 412. Furthermore, pending data for sending or receiving by an instance can be flushed, so that the instance can return to a previous state before the interrupt request is made.

After an interrupt has been requested, each of the instances of the executable process 120 executing on the different concurrent computing lab needs to flush its message queue. For example, the following piece of MATLAB code can be run on all labs which have successfully been interrupted (given that the executable process 120 is parallel computing with MATLAB or distributed computing with MATLAB):

while labProbe( ‘any’ ) labReceive( ‘any’ ); end

This code simply queries the incoming message queue to check for messages from any instance of the executable process 120, and if there is a message, it will be received and taken out of the queue. The act of receiving messages in one instance of the executable process 120 may allow other instances of the executable process 120 to proceed and eventually respond to the interrupt request. Therefore, it is necessary to repeat the flushing procedure until all instances of the executable process 120 have completed a round of flushing together.

Depending on the type of the interrupt request, different actions can be taken and the instances can determine to return to a different previous state. In one embodiment of the present invention, the instances are returned to a state prior to the sending and the receiving of the data between the instances in step 414. In another embodiment of the present invention, the instances can be returned to a state prior to the execution of the computational job in step 416.

After the multiple instances start to execute a computational job, a user can interrupt the computational job by requesting an interrupt. An interrupt can be requested using a specific button provided by a graphical user interface of the executable process 120. Alternatively, an interrupt can be requested using one or more keystrokes on a keyboard, such as using Ctrl+C on the executable process 120. One of ordinary skill in the art will appreciate that there are many different ways the executable process 120 and/or the computing device 102 can provide for a user to interrupt execution of a computational job on the multiple instances of the executable process 120. Once a user interrupt request is detected by an instance of the executable process 120, a function call can be made to propagate the interrupt request to the rest of the instances in the collaboration 310. The following code shows a pseudo code for handling an interrupt request from a user.

/*  * This function is hooked in to a user interface interrupt request.  * This function is called on a separate thread to the main MATLAB  * thread.  */ void userInterrupt( ) { /*  * ensure that handleInterrupt is called on the local process -  * if the local process is not currently in an interruptible  * send/receive, then flushMessages will still be called.  */ setInterruptPending(true); /*  * Also forward the message to all other processes  */ int destination; for(destination = 0; destination < fMpiSize; destination++) { if(destination != fMpiRank) { /*  * Send interrupt message to each other la * rpcCommunicator is a special communicator used to send * and receive “control” rather than “data” messages. * Because this is a separate communicator, messages on * the other communicators will not interfere with * messages sent this way.  */ MPI_Send(interruptMessage, ..., destination, rpcCommunicator); } } }

Many alterations and modifications may be made by those having ordinary skill in the art without departing from the spirit and scope of the invention. Therefore, it must be expressly understood that the illustrated embodiments have been shown only for the purposes of example and should not be taken as limiting the invention, which is defined by the following claims. These claims are to be read as including what they set forth literally and also those equivalent elements which are insubstantially different, even though not identical in other respects to what is shown and described in the above illustrations. Claims 

1. A method performed in conjunction with a plurality of instances of a concurrent computation executing a computational job, where the plurality of instances include a first instance of the concurrent computation and a second instance of the concurrent computation, the first instance of the concurrent computation and the second instance of the concurrent computation communicating using a communication channel, the method comprising: using a computer, sending or receiving a message, the sending or receiving performed by the first instance of the concurrent computation and performing: a first action during an uninterrupted sending or receiving, and a second action when an interrupt request is detected and received at the first instance of the concurrent computation, the second action comprising: notifying one or more of the plurality of instances of the detection of the interrupt request.
 2. The method of claim 1, wherein detecting the interrupt request includes: receiving the interrupt request on behalf of a user, the interrupt request instructing that the execution of the computational job be terminated.
 3. The method of claim 1, wherein detecting the interrupt request includes: detecting an error occurring in at least one of the plurality of instances of the concurrent computation.
 4. The method of claim 1, wherein detecting the interrupt request includes: detecting an error in the communication channel.
 5. The method of claim 4, wherein detecting the error occurring in the communication channel includes: detecting a deadlock of data communication or message communication between two or more of the plurality of instances.
 6. The method of claim 1, further comprising: terminating execution of the computational job, and maintaining communication between the first instance of the concurrent computation and the second instance of the concurrent computation.
 7. The method of claim 6, further comprising: terminating communication of data between the first instance and the second instance.
 8. The method of claim 7, further comprising: returning the first instance and the second instance to a state prior to the communication of data between the two or more of the plurality of instances.
 9. The method of claim 1, further comprising: returning the first instance and the second instance to a state prior to the execution of the computational job.
 10. A non-transitory computer-readable medium that stores computer-executable instructions, the instructions relating to a plurality of instances of a concurrent computation, where the plurality of instances include a first instance of the concurrent computation and a second instance of the concurrent computation, the first instance of the concurrent computation and the second instance of the concurrent computation communicating using a communication channel, the instructions comprising instructions for: sending or receiving a message with the first instance of the concurrent computation, where the sending or receiving performs: a first action during an uninterrupted sending or receiving, and a second action when an interrupt request is detected and received at the first instance of the concurrent computation, the second action comprising: notifying one or more of the plurality of instances of the detection of the interrupt request.
 11. The computer-readable medium of claim 10, wherein the interrupt request is provided on behalf of a user.
 12. The computer-readable medium of claim 10, wherein the interrupt request occurs due to an error in at least one of the one or more other instances of the concurrent computation.
 13. The computer-readable medium of claim 10, wherein the interrupt request occurs due to an error in the communication channel.
 14. The computer-readable medium of claim 10, wherein the interrupt request occurs due to a deadlock of data communication or message communication between the first instance of the concurrent computation and at least one of the one or more other instances of the concurrent computation.
 15. The computer-readable medium of claim 10, further comprising instructions to: flush pending data from one of the one or more other instances.
 16. The computer-readable medium of claim 10, further comprising instructions to: flush messages from a message queue in one of the one or more other instances.
 17. A system for managing one or more of a plurality of instances of a concurrent computation, where the plurality of instances include a first instance of the concurrent computation and a second instance of the concurrent computation, the first instance of the concurrent computation and the second instance of the concurrent computation communicating using a communication channel, the system comprising one or more devices to: send or receiving a message with the first instance of the concurrent computation, where the sending or receiving performs: a first action during an uninterrupted sending or receiving, and a second action when an interrupt request is detected and received at the first instance of the concurrent computation, the second action comprising: notifying one or more of the plurality of instances of the detection of the interrupt request.
 18. The system of claim 17, wherein the one or more devices: receive the interrupt request on behalf of a user, the interrupt request instructing that the execution of the computational job be terminated.
 19. The system of claim 17, wherein the one or more devices: detect an error occurring in at least one of the plurality of instances of the concurrent computation.
 20. The system of claim 17, wherein the one or more devices: detect an error occurring in the communication channel.
 21. The system of claim 17, wherein the one or more devices: detect a deadlock of data communication or message communication between two or more of the plurality of instances.
 22. The system of claim 17, wherein the one or more devices: return the plurality of instances to a state prior to the execution of the computational job. 